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arxiv: 2107.03653 · v1 · pith:IJWQEB36 · submitted 2021-07-08 · cs.AR · cs.DC· cs.LG· cs.PL

MAFIA: Machine Learning Acceleration on FPGAs for IoT Applications

Reviewed by Pithpith:IJWQEB36open to challenge →

classification cs.AR cs.DCcs.LGcs.PL
keywords fpgasinferencemafiaapplicationshandmodelsaccelerationalgebra
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Recent breakthroughs in ML have produced new classes of models that allow ML inference to run directly on milliwatt-powered IoT devices. On one hand, existing ML-to-FPGA compilers are designed for deep neural-networks on large FPGAs. On the other hand, general-purpose HLS tools fail to exploit properties specific to ML inference, thereby resulting in suboptimal performance. We propose MAFIA, a tool to compile ML inference on small form-factor FPGAs for IoT applications. MAFIA provides native support for linear algebra operations and can express a variety of ML algorithms, including state-of-the-art models. We show that MAFIA-generated programs outperform best-performing variant of a commercial HLS compiler by 2.5x on average.

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